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AFCM-LSMA:基于莱维黏菌算法和自适应模糊C均值的新型智能模型,用于从胸部X光图像中识别新型冠状病毒肺炎感染情况。

AFCM-LSMA: New intelligent model based on Lévy slime mould algorithm and adaptive fuzzy C-means for identification of COVID-19 infection from chest X-ray images.

作者信息

Anter Ahmed M, Oliva Diego, Thakare Anuradha, Zhang Zhiguo

机构信息

School of Biomedical Engineering, Health Science Center, Shenzhen University, Shenzhen 518060, China.

Faculty of Computers and Artificial Intelligence, Beni-Suef University, Benisuef 62511, Egypt.

出版信息

Adv Eng Inform. 2021 Aug;49:101317. doi: 10.1016/j.aei.2021.101317. Epub 2021 May 16.

Abstract

PROBLEM

A worldwide challenge is to provide medical resources required for COVID-19 detection. They must be effective tools for fast detection and diagnose of the virus using a large number of tests; besides, they should be low-cost developments. While a chest X-ray scan is a powerful candidate tool, if several tests are carried out, the images produced by the devices must be interpreted accurately and rapidly. COVID-19 induces longitudinal pulmonary parenchymal ground-glass and consolidates pulmonary opacity, in some cases with rounded morphology and peripheral lung distribution, which is very difficult to predict in an early stage.

AIM

In this paper, we aim to develop a robust model to extract high-level features of COVID-19 from chest X-ray (CXR) images to help in rapid diagnosis. In specific, this paper proposes an optimization model for COVID-19 diagnosis based on adaptive Fuzzy C-means (AFCM) and improved Slime Mould Algorithm (SMA) based on Lévy distribution, namely AFCM-LSMA.

METHODS

The SMA optimizer is proposed to adapt weights in oscillation mode and to mimic the process of generating positive and negative feedback from the propagation wave to shape the optimum path for food connectivity. Lévy motion is used as a permutation to perform a local search and to adapt SMA optimizer (LSMA) by generating several solutions that are apart from current candidates. Furthermore, it permits the optimizer to escape from local minima, examine large search areas and reach optimal solutions in fewer iterations with high convergence speed. The FCM algorithm is used to segment pulmonary regions from CXR images and is adapted to reduce time and amount of computations using histogram of the image intensities during the clustering process.

RESULTS

The performance of the proposed AFCM-LSMA has been validated on CXR images and compared with different conventional machine learning and deep learning techniques, meta-heuristics methods, and different chaotic maps. The accuracies achieved by the proposed model are around ( = 0.96,  = 0.23,  = 0.98,  = 0.98,  = 0.79, and  = 0.79).

CONCLUSION

The experimental findings indicate that the proposed new method outperforms all other methods, which will be beneficial to the clinical practitioner for the early identification of infected COVID-19 patients.

摘要

问题

一项全球性挑战是提供新冠病毒检测所需的医疗资源。这些资源必须是能通过大量检测快速检测和诊断该病毒的有效工具;此外,它们应该是低成本的研发成果。虽然胸部X光扫描是一个有力的候选工具,但如果要进行多次检测,设备生成的图像必须得到准确且快速的解读。新冠病毒会导致肺部实质出现纵向磨玻璃影,并伴有肺部实变影,在某些情况下呈圆形形态且分布于肺周边,这在早期很难预测。

目的

在本文中,我们旨在开发一个强大的模型,从胸部X光(CXR)图像中提取新冠病毒的高级特征,以帮助快速诊断。具体而言,本文提出了一种基于自适应模糊C均值(AFCM)和基于 Lévy 分布的改进黏菌算法(SMA)的新冠病毒诊断优化模型,即AFCM-LSMA。

方法

提出SMA优化器以振荡模式调整权重,并模拟从传播波生成正负反馈的过程,以塑造食物连通性的最优路径。Lévy运动用作一种排列方式来进行局部搜索,并通过生成与当前候选解不同的多个解来调整SMA优化器(LSMA)。此外,它允许优化器逃离局部最小值,检查大的搜索区域,并以高收敛速度在更少的迭代中达到最优解。FCM算法用于从CXR图像中分割出肺部区域,并通过在聚类过程中使用图像强度直方图来减少计算时间和计算量。

结果

所提出的AFCM-LSMA的性能已在CXR图像上得到验证,并与不同的传统机器学习和深度学习技术、元启发式方法以及不同的混沌映射进行了比较。所提出模型实现的准确率约为( = 0.96, = 0.23, = 0.98, = 0.98, = 0.79, = 0.79)。

结论

实验结果表明,所提出的新方法优于所有其他方法,这将有助于临床医生早期识别感染新冠病毒的患者。

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